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The Data Science Workshop

You're reading from   The Data Science Workshop Learn how you can build machine learning models and create your own real-world data science projects

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Product type Paperback
Published in Aug 2020
Publisher Packt
ISBN-13 9781800566927
Length 824 pages
Edition 2nd Edition
Languages
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Authors (5):
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Robert Thas John Robert Thas John
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Robert Thas John
Thomas Joseph Thomas Joseph
Author Profile Icon Thomas Joseph
Thomas Joseph
Anthony So Anthony So
Author Profile Icon Anthony So
Anthony So
Dr. Samuel Asare Dr. Samuel Asare
Author Profile Icon Dr. Samuel Asare
Dr. Samuel Asare
Andrew Worsley Andrew Worsley
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Andrew Worsley
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Toc

Table of Contents (16) Chapters Close

Preface
1. Introduction to Data Science in Python 2. Regression FREE CHAPTER 3. Binary Classification 4. Multiclass Classification with RandomForest 5. Performing Your First Cluster Analysis 6. How to Assess Performance 7. The Generalization of Machine Learning Models 8. Hyperparameter Tuning 9. Interpreting a Machine Learning Model 10. Analyzing a Dataset 11. Data Preparation 12. Feature Engineering 13. Imbalanced Datasets 14. Dimensionality Reduction 15. Ensemble Learning

Model Regularization with Lasso Regression

As mentioned at the beginning of this chapter models can overfit training data. One reason for this is having too many features with large coefficients (also called weights). The key to solving this type of overfitting problem is reducing the magnitude of the coefficients.

You may recall that weights are optimized during model training. One method for optimizing weights is called gradient descent. The gradient update rule makes use of a differentiable loss function. Examples of differentiable loss functions are:

  • Mean Absolute Error (MAE)
  • Mean Squared Error (MSE)

For lasso regression, a penalty is introduced in the loss function. The technicalities of this implementation are hidden by the class. The penalty is also called a regularization parameter.

Consider the following exercise in which you over-engineer a model to introduce overfitting, and then use lasso regression to get better results.

Exercise 7.09:...

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